MID-LEVEL FEATURES FOR AUDIO CHORD RECOGNITION USING A DEEP NEURAL NETWORK

Resultado de la investigación: Articlerevisión exhaustiva

Resumen

Deep neural networks composed of several pre-trained layers have been successfully applied to various tasks related to audio processing. Some configurations of deep neural networks (including deep recurrent networks) which can be pretrained with the help of stacked denoising autoencoders are proposed and examined in this paper in application to feature extraction for audio chord recognition task. The features obtained from an audio spectrogram using such network can be used instead of conventional chroma features to recognize the actual chords in the audio recording. Chord recognition quality that was achieved using the proposed features is compared to the one that was achieved using conventional chroma features which do not rely on any machine learning technique
Idioma originalEnglish
Páginas (desde-hasta)109-117
Número de páginas9
PublicaciónУченые записки Казанского университета. Серия: Физико-математические науки
Volumen155
N.º4
EstadoPublished - 2013

GRNTI

  • 50.00.00 AUTOMATION. COMPUTER ENGINEERING

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  • VAK List

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